Improving protein fold recognition and template-based modeling by employing probabilistic-based matching between predicted one-dimensional structural properties of query and corresponding native properties of templates
Yuedong Yang(Nanjing University of Chinese Medicine), Yaoqi Zhou(Dezhou University), Huiying Zhao(Sun Yat-sen University), Eshel Faraggi(Indiana University School of Medicine)
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